04433cam a2200205 i 4500
150812s2016 flua b 001 0 eng
9781498712361
519.5028553
F4B2
Fieller, Nick
329894
Basics of matrix algebra for statistics with R
CRC Press
2016
Boca Raton
xviii, 226 p.
Chapman & Hall/CRC The R series
329899
Table of Contents:
Introduction
• Objectives
• Further Reading
• Guide to Notation
• An Outline Guide to R
• Inputting Data to R
• Summary of Matrix Operators in R
• Examples of R Commands
Vectors and Matrices
• Vectors
• Matrices
• Matrix Arithmetic
• Transpose and Trace of Sums and Products
• Special Matrices
• Partitioned Matrices
• Algebraic Manipulation of matrices
• Useful Tricks
• Linear and Quadratic Forms
• Creating Matrices in R
• Matrix Arithmetic in R
• Initial Statistical Applications
Rank of Matrices
• Introduction and Definitions
• Rank Factorization
• Rank Inequalities
• Rank in Statistics
Determinants
• Introduction and Definitions
• Implementation in R
• Properties of Determinants
• Orthogonal Matrices
• Determinants of Partitioned Matrices
• A Key Property of Determinants
Inverses
• Introduction and Definitions
• Properties
• Implementation in R
• Inverses of Patterned Matrices
• Inverses of Partitioned Matrices
• General Formulae
• Initial Applications Continued
Eigenanalysis of Real Symmetric Matrices
• Introduction and Definitions
• Eigenvectors
• Implementation in R
• Properties of Eigenanalyses
• A Key Statistical Application: PCA
• Matrix Exponential
• Decompositions
• Eigenanalysis of Matrices with Special Structures
• Summary of Key Results
Vector and Matrix Calculus
• Introduction
• Differentiation of a Scalar with Respect to a Vector
• Differentiation of a Scalar with Respect to a Matrix
• Differentiation of a Vector with Respect to a Vector
• Differentiation of a Matrix with Respect to a Scalar
• Use of Eigenanalysis in Constrained Optimization
Further Topics
• Introduction
• Further Matrix Decompositions
• Generalized Inverses
• Hadamard Products
• Kronecker Products and the Vec Operator
Key Applications to Statistics
• Introduction
• The Multivariate Normal Distribution
• Principal Component Analysis
• Linear Discriminant Analysis
• Canonical Correlation Analysis
• Classical Scaling
• Linear Models
Outline Solutions to Exercises
Basics of Matrix Algebra for Statistics with R provides a guide to elementary matrix algebra sufficient for undertaking specialized courses, such as multivariate data analysis and linear models. It also covers advanced topics, such as generalized inverses of singular and rectangular matrices and manipulation of partitioned matrices, for those who want to delve deeper into the subject.
The book introduces the definition of a matrix and the basic rules of addition, subtraction, multiplication, and inversion. Later topics include determinants, calculation of eigenvectors and eigenvalues, and differentiation of linear and quadratic forms with respect to vectors. The text explores how these concepts arise in statistical techniques, including principal component analysis, canonical correlation analysis, and linear modeling.
In addition to the algebraic manipulation of matrices, the book presents numerical examples that illustrate how to perform calculations by hand and using R. Many theoretical and numerical exercises of varying levels of difficulty aid readers in assessing their knowledge of the material. Outline solutions at the back of the book enable readers to verify the techniques required and obtain numerical answers.
Avoiding vector spaces and other advanced mathematics, this book shows how to manipulate matrices and perform numerical calculations in R. It prepares readers for higher-level and specialized studies in statistics.
(https://www.crcpress.com/Basics-of-Matrix-Algebra-for-Statistics-with-R/Fieller/9781498712361)
Mathematical statistics - Data processing
329895
Matrices - Data processing
329896
R (Computer program language)
329897
ddc
BK
202535
202535
0
0
ddc
0
519_502855300000000_F4B2
0
NFIC
338771
VSL
VSL
GEN
2016-02-16
Astha Book Agency
3203.42
2
2
519.5028553 F4B2
191146
2019-07-10
2018-11-06
4004.27
BK